A Natural Language Understanding Approach Toward Extraction of Specifications from Request for Proposals

Barun Kumar Saha, Luca Haab, D. Tandur
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Abstract

Industry 4.0 has witnessed a widespread use of Artificial Intelligence (AI), which, however, often focuses on the operational aspects. In contrast, the life-cycle of any industrial project begins much earlier. Motivated by this, we present an intent-based approach toward bid engineering. In particular, we consider the use of AI to automatically extract the intended specifications-technical and non-technical-of customers from Requests for Proposals (RFPs) by defining relevant data models. Subsequently, we annotate texts from real-life RFPs to train an AI model. In addition, we also design RfpAnno, an end-to-end solution to annotate documents, train models, and extract specifications as structured data. Experimental results indicate that the AI model has about 85% precision and recall, on average, using the test data set. Overall, RfpAnno can potentially reduce the time and effort required by bid engineers to manually copy requirements from RFPs.
一种基于自然语言理解的招标书规格提取方法
工业4.0见证了人工智能(AI)的广泛使用,然而,人工智能通常侧重于运营方面。相比之下,任何工业项目的生命周期都开始得更早。基于此,我们提出了一种基于意图的投标工程方法。特别是,我们考虑使用人工智能,通过定义相关数据模型,从提案请求(rfp)中自动提取客户的预期规格(技术和非技术)。随后,我们对现实生活中的rfp文本进行注释,以训练AI模型。此外,我们还设计了RfpAnno,这是一个端到端的解决方案,用于注释文档、训练模型和提取规范作为结构化数据。实验结果表明,使用测试数据集,人工智能模型的平均准确率和召回率约为85%。总的来说,RfpAnno可以潜在地减少投标工程师手动从rfp中复制需求所需的时间和精力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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